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Efficient k-nearest neighbors search in graph space

机译:高效的k-collect邻居在图形空间中搜索

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The k-nearest neighbors classifier has been widely used to classify graphs in pattern recognition. An unknown graph is classified by comparing it to all the graphs in the training set and then assigning it the class to which the majority of the nearest neighbors belong. When the size of the database is large, the search of k-nearest neighbors can be very time consuming. On this basis, researchers proposed optimization techniques to speed up the search for the nearest neighbors. However, to the best of our knowledge, all the existing works compared the unknown graph to each train graph separately and thus none of them considered finding the k nearest graphs from a query as a single problem. In this paper, we define a new problem called multi graph edit distance to which k-nearest neighbor belongs. As a first algorithm to solve this problem, we take advantage of a recent exact branch-and-bound graph edit distance approach in order to speed up the classification stage. We extend this algorithm by considering all the search spaces needed for the dissimilarity computation between the unknown and the training graphs as a single search space. Results showed that this approach drastically outperformed the original approach under limited time constraints. Moreover, the proposed approach outperformed fast graph edit distance algorithms in terms of average execution time especially when the number of graphs is tremendous. (C) 2018 Published by Elsevier B.V.
机译:K-Collect邻居分类器已被广泛用于对图案识别中的图形进行分类。通过将其与训练集中的所有图表进行比较,然后将其分配给大多数最近邻居所属的类别来分类一个未知图。当数据库的大小很大时,K-Etcled邻居的搜索可能非常耗时。在此基础上,研究人员提出了优化技术,以加快搜索最近的邻居。然而,据我们所知,所有现有的作品都单独将未知图与每个列表图进行了比较,因此它们都不是从查询中查找作为一个问题的k个最近的图。在本文中,我们定义了一个名为MultiGraph编辑距离所属的新问题。作为解决此问题的第一算法,我们利用了最近的精确分支和绑定图编辑距离方法,以加快分类阶段。我们通过考虑未知和训练图之间的异化计算所需的所有搜索空间来扩展该算法作为单个搜索空间。结果表明,在有限的时间限制下,这种方法在原始方法中大幅表现出。此外,所提出的方法在平均执行时间方面优于快速图编辑距离算法,尤其是当图的数量是巨大的时。 (c)2018由elestvier b.v出版。

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